电池(电)
转化式学习
计算机科学
系统工程
数码产品
锂离子电池
电化学储能
领域(数学)
纳米技术
工程类
电气工程
材料科学
超级电容器
功率(物理)
量子力学
电化学
物理
数学
物理化学
化学
教育学
纯数学
电极
心理学
作者
Prasshanth C.V.,Arun Kumar Lakshminarayanan,R. Brindha,Seeram Ramakrishna
标识
DOI:10.1016/j.nxmate.2024.100145
摘要
The widespread adoption of lithium-ion batteries has ushered in a transformative era across industries, powering an array of devices from portable electronics to electric vehicles. This review explores recent advancements in machine learning tools tailored for improving battery materials, management strategies, and system-level optimization. It provides a comprehensive overview of the current landscape, emphasizing the less-explored evolution of machine learning algorithms in battery materials. Machine learning integration enhances our understanding of material properties, accelerates the discovery of efficient compositions, and contributes to the development of more durable lithium-ion batteries. The article also delves into machine learnings role in predicting State of Health and remaining useful life, crucial for proactive battery maintenance. This review also highlights how integrating machine learning into the field of lithium-ion batteries has the potential to revolutionize battery design and accelerate advancements in energy storage technology, promising a more sustainable and technologically advanced future.
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